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Hi, Im Sharon Machlis at IDG Communications, here with Do More With R: Interactive tables with 1 line of code. Tables you can sort and filter can be a good way to explore your data. Theyre also handy when you want to share a data set, so other people can do some exploring. The R package DT (for Data Tables) makes creating such tables so easy. Lets take a look. Ill load 2 packages DT, and rio for importing data. Next, Ill import data about housing prices in 5 U.S. metro areas. This data is based on an index where every citys home price starts at 100 in January of 1995, and then you can see the changes over time. Lets see what that data looks like. This has data for every 2 years 1st quarter of 1996, Q1 1998, and so on through the first quarter of 2018. Theres also a final column showing the change from that 100 starting index through Q1 2018. If you multiply that column by 100, you get the percent change. Want that in an interactive table? Use DTs datatable function. Voila